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Journal article

Semiparametric estimation for count data through weighted distributions

Abstract

This paper is concerned with semiparametric discrete kernel estimators when the unknown count distribution can be considered to have a general weighted Poisson form. The estimator is constructed by multiplying the Poisson estimate with a nonparametric discrete kernel-type estimate of the Poisson weight function. Comparisons are then carried out with the ordinary discrete kernel probability mass function estimators. The Poisson weight function is thus a local multiplicative correction factor, and is considered as the uniform measure to detect departures from the equidispersed Poisson distribution. In this way, the effects of dispersion and zero-proportion with respect to the standard Poisson distribution are also minimized. This method of estimation is also applied to the weighted binomial form for the count distribution having a finite support. The proposed estimators, in addition to being simple, easy-to-implement and effective, also outperform the competing nonparametric and parametric estimators in finite-sample situations. Two examples illustrate this new semiparametric estimation.

Authors

Kokonendji CC; Kiessé TS; Balakrishnan N

Journal

Journal of Statistical Planning and Inference, Vol. 139, No. 10, pp. 3625–3638

Publisher

Elsevier

Publication Date

October 1, 2009

DOI

10.1016/j.jspi.2009.04.013

ISSN

0378-3758

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